Derivation of various NONMEM estimation methods

被引:0
|
作者
Yaning Wang
机构
[1] Office of Clinical Pharmacology,Food and Drug Administration
[2] CDER,undefined
关键词
Nonlinear mixed-effects; Likelihood approximation; Laplacian; First-order conditional method (FOCE); First-order method (FO);
D O I
暂无
中图分类号
学科分类号
摘要
Various estimation methods and the lack of a systematic derivation of the core objective function implemented in NONMEM for nonlinear mixed effect modeling has caused consistent confusion and inquiry among scientists who routinely use NONMEM for data analysis. This paper provides a detailed derivation of the objective functions for the most commonly used estimation methods in NONMEM, such as the Laplacian method, the first-order conditional estimation method (FOCE) with or without interaction, and the first-order method (FO). In addition, models with homogenous or heterogeneous residual error were used to demonstrate the relationship between the objective functions derived from two different types of approximation, namely Laplacian approximation of log-likelihood and linearized model approximation. The relationship between these estimation methods and those implemented in SAS and Splus is discussed.
引用
收藏
页码:575 / 593
页数:18
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